Equivalent-accuracy accelerated neural-network training using analogue memory
Stefano Ambrogio(IBM (United States)), Geoffrey W. Burr(IBM Research - Almaden), Nathan C. P. Farinha(IBM Research - Almaden), Carmelo di Nolfo(IBM Research - Almaden), Yassine Jaoudi(IBM Research - Almaden), Pritish Narayanan(IBM Research - Almaden), Severin Sidler(IBM Research - Almaden), Massimo Giordano(IBM Research - Almaden), Irem Boybat(IBM Research - Zurich), Hsinyu Tsai(IBM Research - Almaden), R. M. Shelby(IBM Research - Almaden), Benjamin D. Killeen(IBM Research - Almaden), Christina Cheng(IBM Research - Almaden), Martina Bodini(IBM Research - Almaden)
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